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Global gridded crop model evaluation: benchmarking, skills, deficiencies and implications

机译:全球网格化作物模型评估:基准,技能,缺陷和影响

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Crop models are increasingly used to simulate crop yields at the global scale, but so far there is no general framework on how to assess model performance. Here we evaluate the simulation results of 14 global gridded crop modeling groups that have contributed historic crop yield simulations for maize, wheat, rice and soybean to the Global Gridded Crop Model Intercomparison (GGCMI) of the Agricultural Model Intercomparison and Improvement Project (AgMIP). Simulation results are compared to reference data at global, national and grid cell scales and we evaluate model performance with respect to time series correlation, spatial correlation and mean bias. We find that global gridded crop models (GGCMs) show mixed skill in reproducing time series correlations or spatial patterns at the different spatial scales. Generally, maize, wheat and soybean simulations of many GGCMs are capable of reproducing larger parts of observed temporal variability (time series correlation coefficients (r) of up to 0.888 for maize, 0.673 for wheat and 0.643 for soybean at the global scale) but rice yield variability cannot be well reproduced by most models. Yield variability can be well reproduced for most major producing countries by many GGCMs and for all countries by at least some. A comparison with gridded yield data and a statistical analysis of the effects of weather variability on yield variability shows that the ensemble of GGCMs can explain more of the yield variability than an ensemble of regression models for maize and soybean, but not for wheat and rice. We identify future research needs in global gridded crop modeling and for all individual crop modeling groups. In the absence of a purely observation-based benchmark for model evaluation, we propose that the best performing crop model per crop and region establishes the benchmark for all others, and modelers are encouraged to investigate how crop model performance can be increased. We make our evaluation system accessible to all crop modelers so that other modeling groups can also test their model performance against the reference data and the GGCMI benchmark.
机译:在全球范围内,越来越多地使用作物模型来模拟作物产量,但是到目前为止,还没有关于如何评估模型表现的通用框架。在这里,我们评估了14个全球有网格作物模型组的仿真结果,这些模型组对玉米,小麦,水稻和大豆的历史性作物产量模拟为农业模型比较与改进项目(AgMIP)的全球网格作物模型比对(GGCMI)做出了贡献。将模拟结果与全球,国家和网格单元尺度上的参考数据进行比较,并且我们就时间序列相关性,空间相关性和均值偏差评估模型性能。我们发现全球网格化作物模型(GGCM)在再现不同空间尺度上的时间序列相关性或空间模式方面显示出混合的技能。通常,许多GGCM的玉米,小麦和大豆模拟能够重现观察到的大部分时间变异性(时间序列相关系数( r ),对于玉米而言最高,为0.888,对于小麦而言最高为0.673,对于大豆而言为0.643在全球范围内),但大多数模型无法很好地再现稻米的产量变异性。对于许多主要生产国来说,许多GGCM可以很好地再现产量变化,对于所有国家,至少有一些可以很好地再现。与栅格化的产量数据进行比较以及天气变化对产量变化的影响的统计分析表明,与玉米和大豆(而不是小麦和水稻)的回归模型相比,GGCM的集合可以解释更多的产量变化。我们确定了全球网格化作物模型以及所有单个作物模型组的未来研究需求。在缺乏纯粹基于观察的模型评估基准的情况下,我们建议每种作物和每个地区的最佳性能作物模型为所有其他模型建立基准,并鼓励建模人员研究如何提高作物模型的性能。我们使所有作物建模者都可以使用我们的评估系统,以便其他建模小组也可以根据参考数据和GGCMI基准测试其模型性能。

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